- VMO2 extends its AI‑driven automation program from broadband to mobile networks with Zinkworks technology.
- The system promises faster issue prediction and corrective action, though questions remain about real‑world impact and cost.
What happened: VMO2 deploys AI to enhance mobile network uptime and reliability
UK mobile operator Virgin Media O2 (VMO2) has announced a significant extension of its automation efforts into its mobile network, working with software firm Zinkworks to deploy artificial intelligence‑driven monitoring and automation tools aimed at reducing network downtime.
The expanded system will use real‑time performance data across radio access, core systems, and operations to identify patterns, anticipate faults, and take corrective action before issues escalate into service disruptions. The initiative builds on automation already used in VMO2’s fixed broadband network, where VMO2 says similar technology cut repair times by more than a third and reduced engineer visits by around 12%.
The deployment is based on cloud‑native services—including Google Cloud’s Gemini and Vertex AI—with engineers retaining oversight while the system works autonomously.
Jeanie York, Chief Technology Officer at VMO2, described the investment as part of ongoing efforts to make the network “more reliable and consistent” for customers, while Zinkworks’ chief executive highlights the ambition to bring AI at scale to telecoms networks.
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Why it’s important
If the technology lives up to its promise, it could help VMO2 detect and prevent faults before customers are affected, a key priority for operators facing rising traffic and more complex services. Proactive fault prediction and automated responses are increasingly touted as ways to reduce lost service hours, lower operational costs, and improve user experience—especially during peak demand or large‑scale events.
However, questions remain about how much impact such systems will have in real‑world operations beyond controlled testing or pilot environments. For example, while automation can reduce routine tasks and engineer dispatches, fault‑prediction systems must be highly accurate to avoid false positives or unnecessary interventions that could themselves affect performance. It is also not clear how scalable or cost‑effective this will be across all parts of a nationwide 4G and 5G network.
Moreover, many operators are exploring similar automation strategies—meaning competition on reliability now extends beyond mere coverage. As VMO2 and others push for more autonomous networks, the industry will be watching to see whether these tools genuinely boost uptime or simply shift costs elsewhere.
